Approaches For Multi-View Redescription Mining
Matej Mihel\v{c}i\'c, Tomislav \v{S}muc

TL;DR
This paper introduces a memory-efficient, extensible framework for multi-view redescription mining that overcomes the limitation of existing methods by handling more than two attribute views, enhancing analysis of complex datasets.
Contribution
It presents a novel multi-view redescription mining framework that supports multiple disjoint attribute sets using rule-based models and incremental view extension, improving over previous two-view approaches.
Findings
Framework effectively relates multiple attribute views.
Improves redescription quality and computational efficiency.
Demonstrates applicability in understanding machine learning models.
Abstract
The task of redescription mining explores ways to re-describe different subsets of entities contained in a dataset and to reveal non-trivial associations between different subsets of attributes, called views. This interesting and challenging task is encountered in different scientific fields, and is addressed by a number of approaches that obtain redescriptions and allow for the exploration and analyses of attribute associations. The main limitation of existing approaches to this task is their inability to use more than two views. Our work alleviates this drawback. We present a memory efficient, extensible multi-view redescription mining framework that can be used to relate multiple, i.e. more than two views, disjoint sets of attributes describing one set of entities. The framework can use any multi-target regression or multi-label classification algorithm, with models that can be…
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